Senior Solution Engineer

Snowflake Snowflake · Data AI · Singapore · Solution Engineering

Senior Solution Engineer at Snowflake, partnering with Sales, Product, Engineering, and Marketing to drive customer success by translating complex business challenges into scalable data platform solutions. Responsibilities include technical discovery, solution architecture, compelling demonstrations, proof-of-concepts, and guiding customers through adoption. The role requires deep technical expertise, commercial acumen, and customer engagement skills, acting as a trusted technical advisor and influencing the product roadmap with field feedback. The company emphasizes an AI-native approach, treating AI as a collaborator to reinvent work and accelerate impact.

What you'd actually do

  1. Present Snowflake technology, architecture, and vision to both executive and technical stakeholders at prospective and existing customers.
  2. Lead technical discovery sessions to understand customer requirements, current architecture, and success criteria, and translate them into solution designs and implementation approaches.
  3. Design scalable, secure, and cost‑efficient architectures that address customer use cases across data ingestion, storage, transformation, analytics, AI/ML, and data applications.
  4. Build and deliver tailored demos, prototypes, and proof‑of‑concepts that showcase differentiated value and drive technical validation.
  5. Collaborate with Account Executives on account strategy, value messaging, and technical win plans to progress opportunities to successful closure.

Skills

Required

  • Extensive experience in a customer‑facing solution engineering / sales engineering / pre‑sales or equivalent technical consulting role.
  • Strong hands‑on competency with modern data platforms and architectures, including: Data warehouse / data lake / lakehouse concepts, Data ingestion, ETL/ELT, and data integration patterns, Analytics, BI, and/or data applications.
  • Solid proficiency in SQL and at least one general‑purpose or data‑processing language (e.g. Python, Java, Scala, or Spark).
  • Experience designing and/or operating solutions on at least one major cloud platform (e.g. AWS, Azure, or GCP).
  • Strong stakeholder management, communication, and storytelling skills, with the ability to clearly articulate value and differentiation.
  • Track record of collaboration with sales teams to drive opportunities from qualification to close.

Nice to have

  • Hands‑on experience with large‑scale data platforms (e.g. traditional data warehouses, MPP databases, Hadoop‑based systems, or cloud‑native data platforms).
  • Experience working with data pipelines and orchestration tools (e.g. Airflow, dbt, cloud‑native services, or similar).
  • Exposure to analytics / BI tools (e.g. Tableau, Power BI, Looker, or equivalent).
  • Familiarity with data modeling concepts (e.g. dimensional/OLAP modeling, data vault, or similar).
  • Experience with enterprise SaaS or platform‑as‑a‑service solutions, particularly in data, analytics, or AI.
  • Bachelor’s degree in Computer Science, Engineering, Mathematics, or a related technical field, or equivalent practical experience.
  • Experience with lakehouse architectures and modern data stack components.
  • Exposure to Data Science / AI / ML / Generative AI workloads and associated tooling.
  • Familiarity with governance, security, and compliance considerations for data platforms (e.g. access control, data protection, audit, and monitoring).
  • Contributions to technical communities (e.g. meetups, conferences, open‑source projects, blogs, or public talks).

What the JD emphasized

  • AI-native thinkers
  • treat AI as a high-trust collaborator
  • reinvent how they work
  • accelerate your impact
  • experimental mindset
  • rapidly test emerging capabilities
  • simpler, more powerful ways to deliver results
  • redefine the future of how work gets done
  • customer success across a wide range of industries
  • scalable, secure, and high‑performance data platform solutions
  • deep technical expertise
  • strong commercial acumen
  • excellent customer engagement skills
  • technical discovery
  • architect solutions
  • compelling demonstrations
  • proof‑of‑concepts and production adoption
  • technical teams and senior business stakeholders
  • fast‑paced, collaborative environment
  • field feedback on customer requirements, product gaps, and emerging use cases
  • influence the product roadmap
  • competitive landscape
  • position our solutions effectively against alternative technologies and approaches
  • trusted advisor to customer technical teams
  • strong relationships
  • best practices, governance, security, and operationalization
  • customer onboarding and initial implementation
  • smooth handover to customer success and services teams
  • Extensive experience in a customer‑facing solution engineering / sales engineering / pre‑sales or equivalent technical consulting role
  • Strong hands‑on competency with modern data platforms and architectures
  • Data warehouse / data lake / lakehouse concepts
  • Data ingestion, ETL/ELT, and data integration patterns
  • Analytics, BI, and/or data applications
  • Solid proficiency in SQL
  • at least one general‑purpose or data‑processing language (e.g. Python, Java, Scala, or Spark)
  • Experience designing and/or operating solutions on at least one major cloud platform (e.g. AWS, Azure, or GCP)
  • Strong stakeholder management, communication, and storytelling skills
  • clearly articulate value and differentiation
  • Track record of collaboration with sales teams
  • drive opportunities from qualification to close
  • Hands‑on experience with large‑scale data platforms
  • Experience with data pipelines and orchestration tools
  • Exposure to analytics / BI tools
  • Familiarity with data modeling concepts
  • Experience with enterprise SaaS or platform‑as‑a‑service solutions
  • data, analytics, or AI
  • Bachelor’s degree in Computer Science, Engineering, Mathematics, or a related technical field, or equivalent practical experience
  • Experience with lakehouse architectures
  • modern data stack components
  • Exposure to Data Science / AI / ML / Generative AI workloads and associated tooling
  • Familiarity with governance, security, and compliance considerations for data platforms
  • access control, data protection, audit, and monitoring
  • Contributions to technical communities